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Guanyang Wang ContactOffice 453, Hill Center |
Welcome! I am an assistant professor in the Department of Statistics at Rutgers University, New Brunswick.
I received my Ph.D. in Mathematics (Ph.D. minor in Statistics) from Stanford University in August 2020, advised by Prof. Persi Diaconis. Prior to that, I received my B.S. with Honors in Mathematics from University of Science and Technology of China (USTC) in Jun 2015.
With several friends and colleagues, we organize a weekly online seminar on Monte Carlo methods. Check out our recorded videos here!
My Erdős number is 2 ( [1] , [2] , and [3]. ) My research is partially supported by NSF DMS-2210849, NSF FET-2403007, and an Adobe Data Science Research Award. Thank you!
My research primarily focuses on Monte Carlo methods, generative AI, quantum computing, and probability. Feel free to reach out if you would like to discuss our shared interests. I particularly encourage students with a strong programming background to get in touch.
If you'd like to read some of my recent articles, you may want to look at:
Antithetic Noise in Diffusion Models
Jing Jia, Sifan Liu, Bowen Song, Wei Yuan, Liyue Shen, Guanyang Wang
[arXiv]
CCS: Controllable and Constrained Sampling with Diffusion Models via Initial Noise Perturbation
Bowen Song, Zecheng Zhang, Zhaoxu Luo, Jason Hu, Wei Yuan, Jing Jia, Zhengxu Tang, Guanyang Wang, Liyue Shen
[arXiv]
NeurIPS 2025
Quantum speedup of non-linear Monte Carlo problems
Jose Blanchet, Yassine Hamoudi, Mario Szegedy, Guanyang Wang
[arXiv]
NeurIPS 2025, spotlight
On importance sampling and independent Metropolis-Hastings with an unbounded weight function
George Deligiannidis, Pierre E. Jacob, El Mahdi Khribch, Guanyang Wang
[arXiv]
Spectral gap bounds for reversible hybrid Gibbs chains
Qian Qin, Nianqiao Ju, Guanyang Wang
[arXiv]
the Annals of Statistics, 2025, 53(4): 1613-1638.
Repeated averages on graphs
Ramis Movassagh, Mario Szegedy, Guanyang Wang
the Annals of Applied Probability 2024, Vol 34 (4), 3781-3819.
[arXiv]
Wei Yuan (Statistics, fourth year Ph.D. student)
Budhaditya Halder (Statistics, fourth year Ph.D. student)
Jing Jia (Computer Science, second year Ph.D. student, co-advised with Peng Zhang)
Yuchen Wei (Mathematics, sixth year Ph.D. student, main advisor: Konstantin Matveev)
Yasa Syed (Statistics Ph.D., graduated in 2025, First Job: Quantitative Researcher at Venerable)
Paper Quantum speedup of non-linear Monte Carlo problems with Jose Blanchet, Yassine Hamoudi and Mario Szegedy is accepted at NeurIPS 2025 as a spotlight (Sep, 2025).
Paper CCS: Controllable and Constrained Sampling with Diffusion Models via Initial Noise Perturbation with Bowen Song, Liyue Shen and others is accepted at NeurIPS 2025 (Sep, 2025).
New paper Antithetic Noise in Diffusion Models with Jing Jia, Sifan Liu, Bowen Song, Wei Yuan, and Liyue Shen is on arxiv (Jun, 2025).
Paper "Connecting Quantum Computing with Classical Stochastic Simulation" with Jose Blanchet, Mark S. Squillante and Mario Szegedy is accepted for a 90-minute tutorial presentation at the 2025 Winter Simulation Conference (WSC) and for publication in the WSC 2025 Proceedings (Jun, 2025).
Paper Spectral gap bounds for reversible hybrid Gibbs chains with Qian Qin and Nianqiao Ju accepted in the Annals of Statistics (AoS) (Mar, 2025).
Paper Differentially Private Range Queries with Correlated Input Perturbation with Prathamesh Dharangutte, Jie Gao , and Ruobin Gong accepted at Artificial Intelligence and Statistics (AISTATS) 2025 (Jan, 2025).
New paper On importance sampling and independent Metropolis-Hastings with an unbounded weight function with George Deligiannidis , Pierre E. Jacob, and El Mahdi Khribch is on arxiv. (Nov, 2024)
New paper A phase transition in sampling from Restricted Boltzmann Machines with Youngwoo Kwon, Qian Qin, and Yuchen Wei is on arxiv. (Oct, 2024)
With Valentin De Bortoli, Yang Chen , Nianqiao Ju , Sifan Liu , Sam Power , Qian Qin , we have launched a weekly online seminar on Monte Carlo methods!(Sep, 2024)
Our collaborative proposal (PI: Mario Szegedy , Co-PI: Jose Blanchet and myself) Quantum Monte Carlo Speed Ups for Multilevel Computations and Other Statistical Algorithms [1] [2] has been awarded a $1.19 million grant by the NSF! Excited :) (Jul 2024).
Antithetic Noise in Diffusion Models
Jing Jia **, Sifan Liu ⟐, Bowen Song, Wei Yuan, Liyue Shen ⟐, Guanyang Wang⟐
[arxiv]
CCS: Controllable and Constrained Sampling with Diffusion Models via Initial Noise Perturbation
Bowen Song, Zecheng Zhang, Zhaoxu Luo, Jason Hu, Wei Yuan, Jing Jia, Zhengxu Tang , Guanyang Wang⟐, Liyue Shen ⟐
[arXiv]
NeurIPS 2025
Quantum speedup of non-linear Monte Carlo problems
Jose Blanchet, Yassine Hamoudi, Mario Szegedy, Guanyang Wang*
[arXiv]
NeurIPS 2025, spotlight
Connecting Quantum Computing with Classical Stochastic Simulation
Jose Blanchet, Mark S. Squillante, Mario Szegedy, Guanyang Wang*
2025 Winter Simulation Conference (WSC) , accepted
On importance sampling and independent Metropolis-Hastings with an unbounded weight function
George Deligiannidis, Pierre E. Jacob, El Mahdi Khribch , Guanyang Wang*
[arXiv]
A phase transition in sampling from Restricted Boltzmann Machines
Youngwoo Kwon, Qian Qin, Guanyang Wang*, Yuchen Wei
[arXiv]
Major revision, the Annals of Applied Probability (AoAP)
Markov chain Monte Carlo without evaluating the target: an auxiliary variable approach
Wei Yuan **, Guanyang Wang
[arXiv]
[Code]
Submitted
When are Unbiased Monte Carlo Estimators More Preferable than Biased Ones?
Guanyang Wang, Jose Blanchet, Peter Glynn
[arXiv]
Submitted
Quadratic Speed-up in Infinite Variance Quantum Monte Carlo
Jose Blanchet, Mario Szegedy, Guanyang Wang*
[arXiv]
Submitted
Differentially Private Range Queries with Correlated Input Perturbation
Prathamesh Dharangutte, Jie Gao, Ruobin Gong, Guanyang Wang*
[arXiv]
AISTATS 2025
Spectral gap bounds for reversible hybrid Gibbs chains
Qian Qin, Nianqiao Ju, Guanyang Wang
[arXiv]
the Annals of Statistics , 2025, 53(4): 1613-1638.
Spectral telescope: Convergence rate bounds for random-scan Gibbs samplers based on a hierarchical structure
Qian Qin, Guanyang Wang*
the Annals of Applied Probability (AoAP) 2024, Vol 34(1B), 1319-1349.
[Blog by Sam] [Slides by Qian]
Prediction and Design of Protease Enzyme Specificity Using a Structure-Aware Graph Convolutional Network
Changpeng Lu, Joseph H. Lubin, Vidur S. Sarma, Samuel Z. Stentz, Guanyang Wang, Sijian Wang, Sagar D. Khare
Proceedings of the National Academy of Sciences (PNAS) 2023, 120 (39) e2303590120.
[bioRxiv]
Repeated averages on graphs
Ramis Movassagh, Mario Szegedy, Guanyang Wang*
the Annals of Applied Probability (AoAP) 2024, Vol 34 (4), 3781-3819.
[arXiv]
Chinese Painting Generation Using Generative Adversarial Networks
Guanyang Wang, Ying Chen, Yuan Chen
CS231n Course Project, 2017. [Chinese Painting Dataset]
Pattern detection in bipartite networks: a review of terminology, applications and methods
Zachary Neal, Annabel Cadieux, Diego Garlaschelli, Nicholas J. Gotelli, Fabio Saracco, Tiziano Squartini, Shade T. Shutters, Werner Ulrich, Guanyang Wang, Giovanni Strona
Accepted, PLOS Complex Systems .
[arXiv]